Archive for the ‘Artificial Intelligence’ Category

The Evolution of Artificial Intelligence as a System – Security Magazine

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The Evolution of Artificial Intelligence as a System - Security Magazine

Don’t Put Your Health in the Hands of Artificial Intelligence Just Yet – Healthline

Artificial intelligence and machine learning promises to revolutionize healthcare.

Proponents say it will help diagnose ailments more quickly and more accurately, as well as help monitor peoples health and take over a swath of doctors paperwork so they can see more patients.

At least, thats the promise.

Theres been an exponential increase in approvals from the Food and Drug Administration (FDA) for these type of health products as well as projections that artificial intelligence (AI) will become an $8 billion industry by 2022.

However, many experts are urging to pump the brakes on the AI craze.

[AI] has the potential to democratize healthcare in ways we can only dream of by allowing equal care for all. However, it is still in its infancy and it needs to mature, Jos Morey, MD, a physician, AI expert, and former associate chief health officer for IBM Watson, told Healthline.

Consumers should be wary of rushing to a new facility simply because they may be providing a new AI tool, especially if it is for diagnostics, he said. There are really just a handful of physicians across the world that are practicing that understand the strengths and benefits of what is currently available.

But what exactly is artificial intelligence in medical context?

It starts with machine learning, which are algorithms that enable a computer program to learn by incorporating increasing large and dynamic amounts of data, according to Wired magazine.

The terms machine learning and AI are often used interchangeably.

To understand machine learning, imagine a given set of data say a set of X-rays that do or do not show a broken bone and having a program try to guess which ones show breaks.

The program will likely get most of the diagnoses wrong at first, but then you give it the correct answers and the machine learns from its mistakes and starts to improve its accuracy.

Rinse and repeat this process hundreds or thousands (or millions) of times and, theoretically, the machine will be able to accurately model, select, or predict for a given goal.

So its easy to see how in healthcare a field that deals with massive amounts of patient data machine learning could be a powerful tool.

One of the key areas where AI is showing promise is in diagnostic analysis, where the AI system will collect and analyze data sets on symptoms to diagnose the potential issue and offer treatment solutions, John Bailey, director of sales for the healthcare technology company Chetu Inc., told Healthline.

This type of functionality can further assist doctors in determining the illness or condition and allow for better, more responsive care, he said. Since AIs key benefit is in pattern detection, it can also be leveraged in identifying, and assist in containing, illness outbreaks and antibiotic resistance.

That all sounds great. So whats the hitch?

The problem lies in lack of reproducibility in real-world settings, Morey said. If you dont test on large robust datasets that are being just one facility or one machine, then you potentially develop bias into the algorithm that will ultimately only work in one very specific setting but wont be compatible for large scale roll-out.

He added, The lack of reproducibility is something that affects a lot of science but AI in healthcare in particular.

For instance, a study in the journal Science found that even when AI is tested in a clinical setting, its often only tested in a single hospital and risks failing when moved to another clinic.

Then theres the issue of the data itself.

Machine learning is only as good as the data sets the machines are working with, said Ray Walsh, a digital privacy expert at ProPrivacy.

A lack of diversity in the datasets used to train up medical AI could lead to algorithms unfairly discriminating against under-represented demographics, Walsh told Healthline.

This can create AI that is prejudiced against certain people, he continued. As a result, AI could lead to prejudice against particular demographics based on things like high body mass index (BMI), race, ethnicity, or gender.

Meanwhile, the FDA has fast-tracked approval of AI-driven products, from approving just 1 in 2014 to 23 in 2018.

Many of these products havent been subjected to clinical trials since they utilize the FDAs 510(k) approval path, which allows companies to market products without clinical trials as long as they are at least as safe and effective, that is, substantially equivalent, to a legally marketed device.

This process has made many in the AI health industry happy. This includes Elad Walach the co-founder and chief executive officer of Aidoc, a startup focused on eliminating bottlenecks in medical image diagnosis.

The FDA 510(k) process has been very effective, Walach told Healthline. The key steps include clinical trials applicable to the product and a robust submission process with various types of documentation addressing the key aspects of the claim and potential risks.

The challenge the FDA is facing is dealing with the increasing pace of innovation coming from AI vendors, he added. Having said that, in the past year they progressed significantly on this topic and created new processes to deal with the increase in AI submissions.

But not everyone is convinced.

The FDA has a deeply flawed approval process for existing types of medical devices and the introduction of additional technological complexity further exposes those regulatory inadequacies. In some instances, it might also raise the level of risk, said David Pring-Mill, a consultant to tech startups and opinion columnist at TechHQ.

New AI products have a dynamic relationship with data. To borrow a medical term, they arent quarantined. The idea is that they are always learning, but perhaps its worth challenging the assumption that a change in outputs always represents an improved product, he said.

The fundamental problem, Pring-Mill told Healthline, is that the 510(k) pathway allows medical device manufacturers to leapfrog ahead without really proving the merits of their products.

One way or another, machine learning and AI integration into the medical field is here to stay.

Therefore, the implementation will be key.

Even if AI takes on the data processing role, physicians may get no relief. Well be swamped with input from these systems, queried incessantly for additional input to rule in or out possible diagnoses, and presented with varying degrees of pertinent information, Christopher Maiona, MD, SFHM, the chief medical officer at PatientKeeper Inc., which specializes in optimizing electronic health records, told Healthline.

Amidst such a barrage, the systems user interface will be critical in determining how information is prioritized and presented so as to make it clinically meaningful and practical to the physician, he added.

And AIs success in medicine both now and in the future may ultimately still rely on the experience and intuition of human beings.

A computer program cannot detect the subtle nuances that comes with years of caring for patients as a human, David Gregg, MD, chief medical officer for StayWell, a healthcare innovation company, told Healthline.

Providers can detect certain cues, connect information and tone and inflection when interacting with patients that allow them to create a relationship and provide more personalized care, he said. AI simply delivers a response to data, but cannot address the emotional aspects or react to the unknown.

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Don't Put Your Health in the Hands of Artificial Intelligence Just Yet - Healthline

Hollywood Is Using Artificial Intelligence To Pick Its Next Blockbuster – Forbes

Hollywood-based film studios are increasingly using AI as part of the decision-making process when ... [+] commissioning and producing new films. (Photo by Valery SharifulinTASS via Getty Images)

For anyone who's ever thought Hollywood's output is formulaic and tired, the movie industry may be about to get worse. Major studio Warner Bros. has signed a deal with Cinelytic, which has developed an AI-powered system that can predict the likelihood of a film's success based on such factors as actors, budget and brand.

Predictably enough, Warner Bros. will be using Cinelytic's software as part of the research process it undergoes when deciding which movies to commission. Cinelytic's platform can determine the 'value' (i.e. profitability) of an actor in any major territory and also calculate how much money a film is likely to earn in cinemas and through supplementary merchandising (e.g. DVDs).

While it obviously can't measure how good a film will be artistically, Warner Bros. will likely use it during early production phases to separate ideas likely to succeed from those that most likely aren't. This follows a run of several years during which the studio has suffered a number of high profile losses on such titles asJustice League and Pan, as well as a few instances where its output hasn't performed as well as hoped (e.g. Batman v. Superman).

And it would seem that Warner Bros. won't be the only film studio integrating AI into its decision-making processes. In fact, AI has already received a modest amount of use by studios up until now, so Warner Bros. entry is likely to open the floodgates even further.

For example, 20th Century Fox has been using a system called Merlin for several years now. In contrast to Cinelytic's platform, Merlin uses AI and machine learning (as well as big data) to match particular films to particular genres and audiences. It does this by using a computer vision system to generate a frame-by-frame analysis of movie trailers. After labelling objects and events within each trailer, it then takes the data it has gathered for one film and compares it against data for other films. It might find, say, that a given trailer most resembles films x, y and z, which were popular with female teenagers.

By comparing datasets, Merlin helps 20th Century Fox identify the ideal demographic(s) for any given film. It also helps the studio decide how it should be advertising and classifying that film, insofar as Merlin links a films trailer to genres.

Aside from Warner Bros. and 20th Century Fox, it's likely that other film studios and production companies have already turned to AI, without being open about it. For instance, Belgium-based ScriptBook uses AI to analyze a film's script and arrive at an estimation of the revenues that film is likely to earn. Not only that, but ScriptBook's platform can also provide likability scores for a film's characters, profiles of its target audience, and even its likely IMDB rating.

According to the company's CEO, Nadira Azermai, ScriptBook is already at a stage where the financial forecast it provides for each film has an 86% accuracy rate. In other words, it's already working with clients in the film industry, even if it hasn't gone public with the names of any studio or company.

ScriptBook was founded in 2015, but it's probable that other companies will emerge in the coming years, since research into the use of AI-based film prediction is still ongoing. In August, researchers from Sungkyunkwan University in South Korea revealed that they had used deep learning to train a bot to forecast the likelihood of a film's success, based this time on a textual summary of its plot. They trained this bot on 42,306 film plot summaries, in the end finding that it was best at predicting which films would be unsuccessful.

That the bot was better at weeding out 'stinkers' rather than classic films is encouraging. Because while the influx of AI into the film industry might imply that Hollywood could become even more self-plagiarizing in the future, it's possible that studios might restrict the use of artificial intelligence specifically to making sure they don't end up commissioning flops. This would potentially leave space for human decision-making and creativity to get involved in choosing between ideas more likely to succeed commercially.

And to play devil's advocate, it's possible that the use of AI might make Hollywood's output less homogenous. To take a simplified and hypothetical example, the massive success of a superhero film could conceivably create a situation where human producers end up commissioning a series of other superhero movies, even though each entry in this series goes on to enjoy diminishing returns. By contrast, an AI-based platform trained on masses of regularly updated data might be able to determine that, rather than making the next Batman or Superman film, a different kind of movie now has a chance of greater success.

That is, an AI platform might force a studio to change its artistic or stylistic direction sooner than it would have done otherwise. If this is the case, then moviegoers and cinephiles probably don't have anything to fear from AI's invasion of cinema.

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Hollywood Is Using Artificial Intelligence To Pick Its Next Blockbuster - Forbes

Evolving Relationship Between Artificial Intelligence and Big Data – ReadWrite

Find the evolving relationship between big data and artificial intelligence. The growing popularity of these technologies offers engaging audience experience. It encourages newcomers to come up with an outstanding plan.

AI and Big Data help you transform your idea into substance. It helps you make full use of visuals, graphs, and multimedia to give your targeted audience with a great experience. According toMarkets And Markets, the worldwide market for AI in accounting assumed to grow. As a result, growth from $666 million in 2019 to $4,791 million by 2024.

The critical component of delivering an outstanding pitch is taking a step further with an incredible plan of assuring success. Big data and Artificial intelligence help you contribute to multiple industries bringing an effective plan. It can directly speak to investors and your targeted audience, covering essential aspects and representing your idea in a nutshell.

According to Techjury, The big data analytics market is set to reach $103 billion by 2023, and in 2019, the big data market is expected to grow by 20%.

From transformation to the phenomenal growth AI and Big data provide you with the accessibility of relevant information. Big data holds the data from multiple sources like social media platforms, search data, and others, which can be structured or unstructured. While artificial intelligence is intelligence demonstrated by machines with the rise of natural intelligence displayed by humans.

The most exciting thing for anyone to do is to identify the problem. So to know what prevents people from reaching their goal. From the product or service you wish to obtain the targeted audiences attention, it must solve the problem of the potential customers. There can be any problem from simple to complicated for which customers need a solution.

For every problem, there is a solution. Once you have understood the problem and willing to bring change, you can clearly solve the problem in the most defined ways. Artificial intelligence is a true reflection of technology advancement. With big data, you can make full use of vital information extracting the information you need.

For every problem, there is a solution. Once you have understood the problem and willing to bring change, you can clearly solve the problem in the most defined ways. Artificial intelligence is a true reflection of technology advancement. With big data, you can make full use of vital information extracting the information you need.

One can come with accurate solutions using AI and big data. It helps in introducing a low error rate compared to humans if appropriately coded. The AI takes the decision based on data and a set of algorithms, which decreases the chance of error. Big data and AI, when used together, can really help you solve the problem by answering the potential issues and bringing an effective solution.

To solve any kind of problem, one must know about the potential market. Divide your target market into segments from whom you expect to get a positive response. It helps you do what you need to. These advanced technologies have a strong foundation with outstanding capabilities to capture the potential market. One must learn and apply these technologies to get a better result in transforming the overall experience of customers.

Capturing the target audiences attention is as important as solving the problem. Once you know how big is your potential market is, and what your target audience wants, you can use these advanced technologies to pitch and get the desired result. That is only possible if you use your segment creatively and consider creating your own identity for targeting your customer while working on your business plan.

Every industry has its own competition with a particular set of competitors. One must invest in something that can really help people and bring the best solution for them with beneficial results and stand out in the real competition.

To stay in the market and promote your service, one must invest in providing customers with alternative solutions. These AI solutions can help you increase your customer base. Give your customers the reason to choose your solution over someone elses. That reason will be the identity that you will create in the market. Build a unique solution that can help you focus on growing your business and stay ahead in the competition.

Mark your presence in the market, accomplishing specific goals that you desire to achieve and have already accomplished. Make your business a reality setting realistic goals and perform better and notable milestones to achieve greater success. The core essence of running a smooth business and getting all that you desire is accomplishing set milestones.

Accomplishing set milestones can really help you get desired results and gain positive support from the trusted and reliable model. By doing this, you can strategies your small business plan with changing times and market demand. Gain an ideal position in the market with better results and in-depth data.

Achieving a milestone can be a tough task. However, with AI & Big data, it has become possible to get predictive analysis for better results and position of control. Consider all the options that make you stand out in the competition and help you grow your business.

AI can help you analyze consumer data patterns. It can predict what users would like to pay for with the help of big data. Both these technologies are compelling to present and provides a useful result that can boost your sales and increase business revenue.

Nitin Garg is the CEO and Co-founder of BR Softech Business Intelligence Software Company. Likes to share his opinions on IT industry via blogs. His interest is to write on the latest and advanced IT technologies which include IoT, VR & AR app development, web, and app development services.

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Evolving Relationship Between Artificial Intelligence and Big Data - ReadWrite

MIT School of Engineering and Takeda join to advance research in artificial intelligence and health – MIT News

MITs School of Engineering and Takeda Pharmaceuticals Company Limited today announced the MIT-Takeda Program to fuel the development and application of artificial intelligence (AI) capabilities to benefit human health and drug development. Centered within the Abdul Latif Jameel Clinic for Machine Learning in Health (J-Clinic), the new program will leverage the combined expertise of both organizations, and is supported by Takedas three-year investment (with the potential for a two-year extension).

This new collaboration will provide MIT with extraordinary access to pharmaceutical infrastructure and expertise, and will help to focus work on challenges with lasting, practical impact. A new educational program offered through J-Clinic will provide Takeda with the ability to learn from and engage with some of MIT's sharpest and most curious minds, and offer insight into the advances that will help shape the health care industry of tomorrow.

We are thrilled to create this collaboration with Takeda, says Anantha Chandrakasan, dean of MITs School of Engineering. The MIT-Takeda Program will build a community dedicated to the next generation of AI and system-level breakthroughs that aim to advance healthcare around the globe.

The MIT-Takeda Program will support MIT faculty, students, researchers, and staff across the Institute who are working at the intersection of AI and human health, ensuring that they can devote their energies to expanding the limits of knowledge and imagination. The new program will coalesce disparate disciplines, merge theory and practical implementation, combine algorithm and hardware innovations, and create multidimensional collaborations between academia and industry.

We share with MIT a vision where next-generation intelligent technologies can be better developed and applied across the entire health care ecosystem, says Anne Heatherington, senior vice president and head of Data Sciences Institute (DSI) at Takeda. Together, we are creating an incredible opportunity to support research, enhance the drug development process, and build a better future for patients.

Established within J-Clinic, a nexus of AI and health care at MIT, the MIT-Takeda Program will focus on the following offerings:

James Collins will serve as faculty lead for the MIT-Takeda Program. Collins is the Termeer Professor of Medical Engineering and Science in MITs Institute for Medical Engineering and Science (IMES) and Department of Biological Engineering, J-Clinic faculty co-lead, and a member of the Harvard-MIT Health Sciences and Technology faculty. He is also a core founding faculty member of the Wyss Institute for Biologically Inspired Engineering at Harvard University and an Institute Member of the Broad Institute of MIT and Harvard.

A joint steering committee co-chaired by Anantha Chandrakasan and Anne Heatherington will oversee the MIT-Takeda Program.

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MIT School of Engineering and Takeda join to advance research in artificial intelligence and health - MIT News